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商业级技术对美国海军陆战队军官候选人肌肉骨骼损伤风险评估的预测效用。

Predictive utility of commercial grade technologies for assessing musculoskeletal injury risk in US Marine Corps Officer candidates.

作者信息

Bird Matthew B, Koltun Kristen J, Mi Qi, Lovalekar Mita, Martin Brian J, Doyle Tim L A, Nindl Bradley C

机构信息

Department of Sports Medicine and Nutrition, Neuromuscular Research Laboratory/Warrior Human Performance Research Center, University of Pittsburgh, Pittsburgh, PA, United States.

Department of Health Sciences, Biomechanics, Physical Performance and Exercise Research Group, Macquarie University, Sydney, NSW, Australia.

出版信息

Front Physiol. 2023 Jan 17;14:1088813. doi: 10.3389/fphys.2023.1088813. eCollection 2023.

Abstract

Recently, commercial grade technologies have provided black box algorithms potentially relating to musculoskeletal injury (MSKI) risk and functional movement deficits, in which may add value to a high-performance model. Thus, the purpose of this manuscript was to evaluate composite and component scores from commercial grade technologies associations to MSKI risk in Marine Officer Candidates. 689 candidates (Male candidates = 566, Female candidates = 123) performed counter movement jumps on SPARTA™ force plates and functional movements (squats, jumps, lunges) in DARI™ markerless motion capture at the start of Officer Candidates School (OCS). De-identified MSKI data was acquired from internal OCS reports for those who presented to the Physical Therapy department for MSKI treatment during the 10 weeks of training. Logistic regression analyses were conducted to validate the utility of the composite scores and supervised machine learning algorithms were deployed to create a population specific model on the normalized component variables in SPARTA™ and DARI™. Common MSKI risk factors (cMSKI) such as older age, slower run times, and females were associated with greater MSKI risk. Composite scores were significantly associated with MSKI, although the area under the curve (AUC) demonstrated poor discrimination (AUC = .55-.57). When supervised machine learning algorithms were trained on the normalized component variables and cMSKI variables, the overall training models performed well, but when the training models were tested on the testing data the models classified MSKI "by chance" (testing AUC avg = .55-.57) across all models. Composite scores and component population specific models were poor predictors of MSKI in candidates. While cMSKI, SPARTA™, and DARI™ models performed similarly, this study does not dismiss the use of commercial technologies but questions the utility of a singular screening task to predict MSKI over 10 weeks. Further investigations should evaluate occupation specific screening, serial measurements, and/or load exposure for creating MSKI risk models.

摘要

最近,商业级技术提供了可能与肌肉骨骼损伤(MSKI)风险和功能运动缺陷相关的黑箱算法,这可能会为高性能模型增添价值。因此,本手稿的目的是评估商业级技术协会的综合得分和分项得分与海军陆战队军官候选人MSKI风险之间的关系。689名候选人(男性候选人 = 566名,女性候选人 = 123名)在军官候选人学校(OCS)开始时,在SPARTA™测力板上进行了反向移动跳跃,并在DARI™无标记运动捕捉系统中进行了功能性运动(深蹲、跳跃、弓步)。从OCS内部报告中获取了接受MSKI治疗的人员的去识别化MSKI数据,这些人员在为期10周的训练期间前往物理治疗科就诊。进行了逻辑回归分析以验证综合得分的效用,并部署了监督机器学习算法,以基于SPARTA™和DARI™中的标准化分项变量创建特定人群模型。常见的MSKI风险因素(cMSKI),如年龄较大、跑步时间较慢和女性,与更高的MSKI风险相关。综合得分与MSKI显著相关,尽管曲线下面积(AUC)显示出较差的区分能力(AUC = 0.55 - 0.57)。当对标准化分项变量和cMSKI变量进行监督机器学习算法训练时,整体训练模型表现良好,但当在测试数据上测试训练模型时,所有模型对MSKI的分类都是“随机的”(测试AUC平均值 = 0.55 - 0.57)。综合得分和特定人群分项模型在候选人中对MSKI的预测能力较差。虽然cMSKI、SPARTA™和DARI™模型表现相似,但本研究并不否定商业技术的使用,而是对单一筛查任务在预测10周内MSKI的效用提出了质疑。进一步的研究应评估特定职业的筛查、系列测量和/或负荷暴露,以创建MSKI风险模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7baf/9887107/e162b1ff1b07/fphys-14-1088813-g001.jpg

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